Hitchhiker's guide to cancer-associated lymphoid aggregates in histology images: manual and deep learning-based quantification approaches

Karina Silina, Francesco Ciompi
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引用次数: 0

Abstract

Quantification of lymphoid aggregates including tertiary lymphoid structures with germinal centers in histology images of cancer is a promising approach for developing prognostic and predictive tissue biomarkers. In this article, we provide recommendations for identifying lymphoid aggregates in tissue sections from routine pathology workflows such as hematoxylin and eosin staining. To overcome the intrinsic variability associated with manual image analysis (such as subjective decision making, attention span), we recently developed a deep learning-based algorithm called HookNet-TLS to detect lymphoid aggregates and germinal centers in various tissues. Here, we additionally provide a guideline for using manually annotated images for training and implementing HookNet-TLS for automated and objective quantification of lymphoid aggregates in various cancer types.
组织学图像中癌症相关淋巴聚集体的 "搭便车指南":手动和基于深度学习的量化方法
对癌症组织学图像中的淋巴聚集体(包括带有生殖中心的三级淋巴结构)进行定量是开发预后和预测性组织生物标记物的一种很有前景的方法。在本文中,我们将为从苏木精和伊红染色等常规病理工作流程中识别组织切片中的淋巴聚集提供建议。为了克服人工图像分析的内在可变性(如主观决策、注意力等),我们最近开发了一种基于深度学习的算法,称为 HookNet-TLS,用于检测各种组织中的淋巴聚集体和生殖中心。在此,我们还提供了使用人工标注图像进行训练和实施 HookNet-TLS 的指南,以便自动、客观地量化各种癌症类型中的淋巴聚集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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